Bagging in Deep Learning
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Bagging is short for bootstrap aggregating.
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Bagging is a technique for reducing generalization error by combining several machine learning models.
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Bagging employs model averaging.
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This is powerful method of regularization, which is widely used in machine learning contest. However, it is quite impractical, since the computational cost of training several models in expensive.
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